Tackling Multimodal Device Distributions in Inverse Photonic Design
using Invertible Neural Networks
- URL: http://arxiv.org/abs/2208.14212v1
- Date: Mon, 29 Aug 2022 08:46:17 GMT
- Title: Tackling Multimodal Device Distributions in Inverse Photonic Design
using Invertible Neural Networks
- Authors: Michel Frising, Jorge Bravo-Abad, Ferry Prins
- Abstract summary: Inverse design is the process of matching a device or process parameters to exhibit a desired performance.
Most traditional optimization routines assume an invertible one-to-one mapping between the design parameters and the target performance.
We show how a generative modeling approach based on invertible neural networks can provide the full distribution of possible solutions to the inverse design problem.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Inverse design, the process of matching a device or process parameters to
exhibit a desired performance, is applied in many disciplines ranging from
material design over chemical processes and to engineering. Machine learning
has emerged as a promising approach to overcome current limitations imposed by
the dimensionality of the parameter space and multimodal parameter
distributions. Most traditional optimization routines assume an invertible
one-to-one mapping between the design parameters and the target performance.
However, comparable or even identical performance may be realized by different
designs, yielding a multimodal distribution of possible solutions to the
inverse design problem which confuses the optimization algorithm. Here, we show
how a generative modeling approach based on invertible neural networks can
provide the full distribution of possible solutions to the inverse design
problem and resolve the ambiguity of nanodevice inverse design problems
featuring multimodal distributions. We implement a Conditional Invertible
Neural Network (cINN) and apply it to a proof-of-principle nanophotonic
problem, consisting in tailoring the transmission spectrum of a metallic film
milled by subwavelength indentations. We compare our approach with the commonly
used conditional Variational Autoencoder (cVAE) framework and show the superior
flexibility and accuracy of the proposed cINNs when dealing with multimodal
device distributions. Our work shows that invertible neural networks provide a
valuable and versatile toolkit for advancing inverse design in nanoscience and
nanotechnology.
Related papers
- Compositional Generative Inverse Design [69.22782875567547]
Inverse design, where we seek to design input variables in order to optimize an underlying objective function, is an important problem.
We show that by instead optimizing over the learned energy function captured by the diffusion model, we can avoid such adversarial examples.
In an N-body interaction task and a challenging 2D multi-airfoil design task, we demonstrate that by composing the learned diffusion model at test time, our method allows us to design initial states and boundary shapes.
arXiv Detail & Related papers (2024-01-24T01:33:39Z) - Transfer learning-assisted inverse modeling in nanophotonics based on mixture density networks [0.840835093659811]
In this paper, we propose an inverse modeling method for nanophotonic structures based on a mixture density network model enhanced by transfer learning.
The proposed approach allows overcoming these limitations using transfer learning-based techniques, while preserving a high accuracy in the prediction capability of the design solutions given an optical response as an input.
arXiv Detail & Related papers (2024-01-21T09:03:30Z) - Spatial Attention Kinetic Networks with E(n)-Equivariance [0.951828574518325]
Neural networks that are equivariant to rotations, translations, reflections, and permutations on n-dimensional geometric space have shown promise in physical modeling.
We propose a simple alternative functional form that uses neurally parametrized linear combinations of edge vectors to achieve equivariance.
We design spatial attention kinetic networks with E(n)-equivariance, or SAKE, which are competitive in many-body system modeling tasks while being significantly faster.
arXiv Detail & Related papers (2023-01-21T05:14:29Z) - Towards Multi-spatiotemporal-scale Generalized PDE Modeling [4.924631198058705]
We make a comparison between various FNO and U-Net like approaches on fluid mechanics problems in both vorticity-stream and velocity function form.
We show promising results on generalization to different PDE parameters and time-scales with a single surrogate model.
arXiv Detail & Related papers (2022-09-30T17:40:05Z) - Inverse design of photonic devices with strict foundry fabrication
constraints [55.41644538483948]
We introduce a new method for inverse design of nanophotonic devices which guarantees that designs satisfy strict length scale constraints.
We demonstrate the performance and reliability of our method by designing several common integrated photonic components.
arXiv Detail & Related papers (2022-01-31T02:27:25Z) - Mixed Integer Neural Inverse Design [27.43272793942742]
piecewise linear property, very common in everyday neural networks, allows for an inverse design formulation based on mixed-integer linear programming.
Our mixed-integer inverse design uncovers globally optimal or near optimal solutions in a principled manner.
arXiv Detail & Related papers (2021-09-27T09:19:41Z) - De-homogenization using Convolutional Neural Networks [1.0323063834827415]
This paper presents a deep learning-based de-homogenization method for structural compliance minimization.
For an appropriate choice of parameters, the de-homogenized designs perform within $7-25%$ of the homogenization-based solution.
arXiv Detail & Related papers (2021-05-10T09:50:06Z) - Machine Learning Framework for Quantum Sampling of Highly-Constrained,
Continuous Optimization Problems [101.18253437732933]
We develop a generic, machine learning-based framework for mapping continuous-space inverse design problems into surrogate unconstrained binary optimization problems.
We showcase the framework's performance on two inverse design problems by optimizing thermal emitter topologies for thermophotovoltaic applications and (ii) diffractive meta-gratings for highly efficient beam steering.
arXiv Detail & Related papers (2021-05-06T02:22:23Z) - Joint Deep Reinforcement Learning and Unfolding: Beam Selection and
Precoding for mmWave Multiuser MIMO with Lens Arrays [54.43962058166702]
millimeter wave (mmWave) multiuser multiple-input multiple-output (MU-MIMO) systems with discrete lens arrays have received great attention.
In this work, we investigate the joint design of a beam precoding matrix for mmWave MU-MIMO systems with DLA.
arXiv Detail & Related papers (2021-01-05T03:55:04Z) - Deep Multi-Task Learning for Cooperative NOMA: System Design and
Principles [52.79089414630366]
We develop a novel deep cooperative NOMA scheme, drawing upon the recent advances in deep learning (DL)
We develop a novel hybrid-cascaded deep neural network (DNN) architecture such that the entire system can be optimized in a holistic manner.
arXiv Detail & Related papers (2020-07-27T12:38:37Z) - Iterative Algorithm Induced Deep-Unfolding Neural Networks: Precoding
Design for Multiuser MIMO Systems [59.804810122136345]
We propose a framework for deep-unfolding, where a general form of iterative algorithm induced deep-unfolding neural network (IAIDNN) is developed.
An efficient IAIDNN based on the structure of the classic weighted minimum mean-square error (WMMSE) iterative algorithm is developed.
We show that the proposed IAIDNN efficiently achieves the performance of the iterative WMMSE algorithm with reduced computational complexity.
arXiv Detail & Related papers (2020-06-15T02:57:57Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.